Knowledge‐based quality control of organ delineations in radiation therapy

Autor: Hamidreza Nourzadeh, Cheukkai Hui, Mahmoud Ahmad, Nasrin Sadeghzadehyazdi, William T. Watkins, Sunil W. Dutta, Clayton E. Alonso, Daniel M. Trifiletti, Jeffrey V. Siebers
Rok vydání: 2022
Předmět:
Zdroj: Medical Physics. 49:1368-1381
ISSN: 2473-4209
0094-2405
Popis: To reduce the likelihood of errors in organ delineations used for radiotherapy treatment planning, a knowledge-based quality control (KBQC) system, which discriminates between valid and anomalous delineations is developed.The KBQC is comprised of a group-wise inference system and anomaly detection modules trained using historical priors from 296 locally advanced lung and prostate cancer patient computational tomographies (CTs). The inference system discriminates different organs based on shape, relational, and intensity features. For a given delineated image set, the inference system solves a combinatorial optimization problem that results in an organ group whose relational features follow those of the training set considering the posterior probabilities obtained from support vector machine (SVM), discriminant subspace ensemble (DSE), and artificial neural network (ANN) classifiers. These classifiers are trained on nonrelational features with a 10-fold cross-validation scheme. The anomaly detection module is a bank of ANN autoencoders, each corresponding with an organ, trained on nonrelational features. A heuristic rule detects anomalous organs that exceed predefined organ-specific tolerances for the feature reconstruction error and the classifier's posterior probabilities. Independent data sets with anomalous delineations were used to test the overall performance of the KBQC system. The anomalous delineations were manually manipulated, computer-generated, or propagated based on a transformation obtained by imperfect registrations. Both peer-review-based scoring system and shape similarity coefficient (DSC) were used to label regions of interest (ROIs) as normal or anomalous in two independent test cohorts.The accuracy of the classifiers wasThe KBQC system detected anomalous delineations with superior accuracy compared to classification methods that judge only based on posterior probabilities.
Databáze: OpenAIRE